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I have a data that is based on skus and periods. I have initial demand and inventory. I put these periods on columns to be able calculate realized demand for each period.
For example, there are demands of 51592,19800, 0, 9200, 0 with initial inventory of 285039 units (don't see period 100, they are just outliers, no calculation is needed). My inventory obviously covers all these 5 months' demand.
In the first period, I make a substraction to see inventory on-hand level. This value (negative value means I have inventory) should be carried over next periods, but since there is no period 3 in the data, I miss the inventory value. Thus, it seems like in the graphs I have an unsatisfied demand for periyod 3 and 4.
My formula refers to periods (e.g.,if period=3 then calculate(x)). If any period is missing, the calculation fails.
After reaching correct values, I want to see the pure demands by summing the columns which refer to periods' real demand.
Hi @ars ,
I create a table as you mentioned.
Then I create a calculated column and here is the DAX code.
Rank =
RANKX (
FILTER ( 'Table', 'Table'[Name] = EARLIER ( 'Table'[Name] ) ),
'Table'[Value],
,
ASC,
DENSE
)
Next I create another calculated column and get what you want.
Column =
VAR A_Value =
CALCULATE (
MAX ( 'Table'[Value] ),
FILTER (
'Table',
'Table'[Name] = "A"
&& 'Table'[SKU] = EARLIER ( 'Table'[SKU] )
&& 'Table'[Rank] = EARLIER ( 'Table'[Rank] )
)
)
VAR B_Value =
CALCULATE (
MAX ( 'Table'[Value] ),
FILTER (
'Table',
'Table'[Name] = "B"
&& 'Table'[SKU] = EARLIER ( 'Table'[SKU] )
&& 'Table'[Rank] = EARLIER ( 'Table'[Rank] )
)
)
RETURN
IF (
'Table'[Name] = "A"
|| 'Table'[Name] = "B",
IF ( A_Value <> BLANK () && B_Value <> BLANK (), A_Value + B_Value, 0 ),
BLANK ()
)
Best Regards
Yilong Zhou
If this post helps, then please consider Accept it as the solution to help the other members find it more quickly.
Thanks a lot for your help 🙂
However, I have thousands of names and skus, therefore your solution does not fit in. According to my formulation, I generated a new formula by combining both rank and period and after that I separately summed demand of 1st period, demand of 2nd period etc.. For example, since period=4 corresponds to any rank between 1 and 4, I should add them up in order to find 4th period's demand.
**("sıra" means rank, "xth periyot net" means 1st period realized demand)
Thank you so much for your response 🙂 Another question comes up:
How can I match the ranks? For instance, for one sku rank 4 corresponds to 4th month, for another sku rank 4 corresponds to 3rd month. How can I calculate the real demand for 4th month?
try ALL ( 'Table'[Period] ) instead of FILTER.
Thanks a lot for your contribution 🙂
According to my formulation, I generated a new formula by combining both rank and period and after that I separately summed demand of 1st period, demand of 2nd period etc.. For example, since period=4 corresponds to any rank between 1 and 4, I should add them up to find 4th period's demand.
**("sıra" means rank, "xth periyot net" means 1st period realized demand)
Hi @ars ,
You can RANKX your period and perform calculatioins on the RANKX column instead:
There is no period 3 for Category A but the rank column shows 3 for Period 4.
Calcuation is performed on the RANKX column to get the previous period's value.
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